Accurate Deep Learning-Aided Density-Free Strategy for Many-Body Dispersion-Corrected Density Functional Theory.
Pier Paolo PoierThéo Jaffrelot InizanOlivier AdjouaLouis LagardèreJean-Philip PiquemalPublished in: The journal of physical chemistry letters (2022)
Using a deep neuronal network (DNN) model trained on the large ANI-1 data set of small organic molecules, we propose a transferable density-free many-body dispersion (DNN-MBD) model. The DNN strategy bypasses the explicit Hirshfeld partitioning of the Kohn-Sham electron density required by MBD models to obtain the atom-in-molecules volumes used by the Tkatchenko-Scheffler polarizability rescaling. The resulting DNN-MBD model is trained with minimal basis iterative Stockholder atomic volumes and, coupled to density functional theory (DFT), exhibits comparable (if not greater) accuracy to other approaches based on different partitioning schemes. Implemented in the Tinker-HP package, the DNN-MBD model decreases the overall computational cost compared to MBD models where the explicit density partitioning is performed. Its coupling with the recently introduced Stochastic formulation of the MBD equations ( J. Chem. Theory Comput. 2022 , 18 (3), 1633-1645) enables large routine dispersion-corrected DFT calculations at preserved accuracy. Furthermore, the DNN electron density-free features extend the MBD model's applicability beyond electronic structure theory within methodologies such as force fields and neural networks.
Keyphrases
- density functional theory
- molecular dynamics
- deep learning
- machine learning
- neural network
- drug delivery
- artificial intelligence
- clinical trial
- magnetic resonance imaging
- mass spectrometry
- electronic health record
- resistance training
- high resolution
- crystal structure
- blood brain barrier
- clinical practice
- single molecule
- body composition
- subarachnoid hemorrhage
- high intensity
- solar cells